Completely random measures for modeling power laws in sparse graphs

03/22/2016
by   Diana Cai, et al.
0

Network data appear in a number of applications, such as online social networks and biological networks, and there is growing interest in both developing models for networks as well as studying the properties of such data. Since individual network datasets continue to grow in size, it is necessary to develop models that accurately represent the real-life scaling properties of networks. One behavior of interest is having a power law in the degree distribution. However, other types of power laws that have been observed empirically and considered for applications such as clustering and feature allocation models have not been studied as frequently in models for graph data. In this paper, we enumerate desirable asymptotic behavior that may be of interest for modeling graph data, including sparsity and several types of power laws. We outline a general framework for graph generative models using completely random measures; by contrast to the pioneering work of Caron and Fox (2015), we consider instantiating more of the existing atoms of the random measure as the dataset size increases rather than adding new atoms to the measure. We see that these two models can be complementary; they respectively yield interpretations as (1) time passing among existing members of a network and (2) new individuals joining a network. We detail a particular instance of this framework and show simulated results that suggest this model exhibits some desirable asymptotic power-law behavior.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/30/2022

A Solvable Model of Neural Scaling Laws

Large language models with a huge number of parameters, when trained on ...
research
01/06/2014

Sparse graphs using exchangeable random measures

Statistical network modeling has focused on representing the graph as a ...
research
07/05/2023

Scaling Laws Do Not Scale

Recent work has proposed a power law relationship, referred to as “scali...
research
12/31/2019

A Dynamic Process Reference Model for Sparse Networks with Reciprocity

Many social and other networks exhibit stable size scaling relationships...
research
05/25/2020

Spatiotemporal Network Evolution of Anthropogenic Night Light 1992-2015

Satellite imaging of night light provides a global record of lighted dev...
research
06/25/2020

First-Order Model-Checking in Random Graphs and Complex Networks

Complex networks are everywhere. They appear for example in the form of ...
research
06/26/2023

The Underlying Scaling Laws and Universal Statistical Structure of Complex Datasets

We study universal traits which emerge both in real-world complex datase...

Please sign up or login with your details

Forgot password? Click here to reset